Recent research suggests that predictions made by machine-learning models can amplify biases present in the training data. When a model amplifies bias, it makes certain predictions at a higher rate for some groups than expected based on training-data statistics. Mitigating such bias amplification requires a deep understanding of the mechanics in modern machine learning that give rise to that amplification. We perform the first systematic, controlled study into when and how bias amplification occurs. To enable this study, we design a simple image-classification problem in which we can tightly control (synthetic) biases. Our study of this problem reveals that the strength of bias amplification is correlated to measures such as model accuracy,...
With an increased focus on incorporating fairness in machine learning models, it becomes imperative ...
Problem Statement: One potential kind of algorithmic bias is unevenly distributed model inaccuracies...
An inductive learning algorithm takes a set of data as input and generates a hypothesis as output. A...
Machine Learning is a branch of artificial intelligence focused on building applications that learn ...
Accurately measuring discrimination in machine learning-based automated decision systems is required...
Machine learning may be oblivious to human bias but it is not immune to its perpetuation. Marginalis...
Thesis (Ph.D.)--University of Washington, 2020Modern machine learning algorithms have been able to a...
. Often, what is termed algorithmic bias in machine learning will be due to historic bias in the tra...
Underrepresentation and misrepresentation of protected groups in the training data is a significant ...
Machine learning models are biased when trained on biased datasets. Many recent approaches have been...
In public media as well as in scientific publications, the term bias is used in conjunction with mac...
In public media as well as in scientific publications, the term bias is used in conjunction with mac...
A major problem in machine learning is that of inductive bias: how to choose a learner’s hy-pothesis...
Human algorithm interaction: people are now affected by the output of all types of machine learni...
Machine learning models are built using training data, which is collected from human experience and ...
With an increased focus on incorporating fairness in machine learning models, it becomes imperative ...
Problem Statement: One potential kind of algorithmic bias is unevenly distributed model inaccuracies...
An inductive learning algorithm takes a set of data as input and generates a hypothesis as output. A...
Machine Learning is a branch of artificial intelligence focused on building applications that learn ...
Accurately measuring discrimination in machine learning-based automated decision systems is required...
Machine learning may be oblivious to human bias but it is not immune to its perpetuation. Marginalis...
Thesis (Ph.D.)--University of Washington, 2020Modern machine learning algorithms have been able to a...
. Often, what is termed algorithmic bias in machine learning will be due to historic bias in the tra...
Underrepresentation and misrepresentation of protected groups in the training data is a significant ...
Machine learning models are biased when trained on biased datasets. Many recent approaches have been...
In public media as well as in scientific publications, the term bias is used in conjunction with mac...
In public media as well as in scientific publications, the term bias is used in conjunction with mac...
A major problem in machine learning is that of inductive bias: how to choose a learner’s hy-pothesis...
Human algorithm interaction: people are now affected by the output of all types of machine learni...
Machine learning models are built using training data, which is collected from human experience and ...
With an increased focus on incorporating fairness in machine learning models, it becomes imperative ...
Problem Statement: One potential kind of algorithmic bias is unevenly distributed model inaccuracies...
An inductive learning algorithm takes a set of data as input and generates a hypothesis as output. A...